Název: | Sex Classification of Face Images using Embedded Prototype Subspace Classifiers |
Autoři: | Hast, Anders |
Citace zdrojového dokumentu: | WSCG 2023: full papers proceedings: 1. International Conference in Central Europe on Computer Graphics, Visualization and Computer Vis 43-52.ion, p. |
Datum vydání: | 2023 |
Nakladatel: | Václav Skala - UNION Agency |
Typ dokumentu: | konferenční příspěvek conferenceObject |
URI: | http://hdl.handle.net/11025/54398 |
ISBN: | 978-80-86943-32-9 |
ISSN: | 2464–4617 (print) 2464–4625 (CD/DVD) |
Klíčová slova: | pohlaví a klasifikace pohlaví;klasifikace podprostoru vloženého prototypu;subprostor;rozpoznávání obličejů |
Klíčová slova v dalším jazyce: | sex and gender classification;subspaces;Embedded Prototype Subspace Classification;face recognition |
Abstrakt v dalším jazyce: | In recent academic literature Sex and Gender have both become synonyms, even though distinct definitions do exist. This give rise to the question, which of those two are actually face image classifiers identifying? It will be argued and explained why CNN based classifiers will generally identify gender, while feeding face recognition feature vectors into a neural network, will tend to verify sex rather than gender. It is shown for the first time how state of the art Sex Classification can be performed using Embedded Prototype Subspace Classifiers (EPSC) and also how the projection depth can be learned efficiently. The automatic Gender classification, which is produced by the InsightFace project, is used as a baseline and compared to the results given by the EPSC, which takes the feature vectors produced by InsightFace as input. It turns out that the depth of projection needed is much larger for these face feature vectors than for an example classifying on MNIST or similar. Therefore, one important contribution is a simple method to determine the optimal depth for any kind of data. Furthermore, it is shown how the weights in the final layer can be set in order to make the choice of depth stable and independent of the kind of learning data. The resulting EPSC is extremely light weight and yet very accurate, reaching over 98% accuracy for several datasets. |
Práva: | © Václav Skala - UNION Agency |
Vyskytuje se v kolekcích: | WSCG 2023: Full Papers Proceedings |
Soubory připojené k záznamu:
Soubor | Popis | Velikost | Formát | |
---|---|---|---|---|
E07-full.pdf | Plný text | 1,98 MB | Adobe PDF | Zobrazit/otevřít |
Použijte tento identifikátor k citaci nebo jako odkaz na tento záznam:
http://hdl.handle.net/11025/54398
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